预测环境条件以增强遗产的气候适应能力

Bhavesh Shah, Emily R Long
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引用次数: 0

摘要

遗产一直面临着退化有害因素的威胁,而气候变化可能会加剧这些风险[2]。因此,遗产机构需要采取气候适应能力的立场;他们必须“预测、吸收和适应”气候变化的影响,为子孙后代保护文化遗产[10]。一个关键的步骤是了解未来的气候如何影响文物周围的环境,无论它们是在展出还是在储存中。每个博物馆及其藏品都是独一无二的,因此最近的研究主要集中在对特定遗产地的气候变化案例研究上[9]。下一个挑战是在更大的范围内预测环境条件和遗产的相关风险。机器学习和数据科学有可能为更多的遗产机构提供这种分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Environmental Conditions to Foster Climate Resilience in Heritage
Heritage objects are continually at risk from the harmful agents of deterioration, and these risks may be exacerbated by climate change [2]. Therefore, heritage institutions need to adopt a position of climate resilience; they must “anticipate, absorb, and adapt” to the effects of climate change to preserve cultural heritage for future generations [10]. One crucial step is to understand how the future climate may affect the environments surrounding heritage objects whether they are on display or in storage. Every museum and its collection is unique, so most recent research has focused on climate change case studies for particular heritage sites [9]. The next challenge is to forecast the environmental conditions and associated risks to heritage objects at a broader scale. Machine learning and data science have the potential to make this analysis accessible for more heritage institutions.
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